使用专家产品混合变分自编码器改进多模态神经成像数据的规范建模。

Sayantan Kumar, Philip Payne, Aristeidis Sotiras
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引用次数: 0

摘要

神经影像学中的规范模型学习健康人群分布的大脑模式,并估计像阿尔茨海默病(AD)这样的疾病受试者如何偏离规范。现有的基于变分自编码器(VAE)的规范模型使用多模态神经成像数据,通过估计单模态潜在后验的积或平均来聚合来自多模态的信息。这通常会导致无信息的联合潜在分布,从而影响对主体水平偏差的估计。在这项工作中,我们通过采用专家产品混合(MoPoE)技术解决了先前的局限性,该技术可以更好地模拟关节潜在后验。我们的模型通过计算多模态潜在空间的偏差将受试者标记为异常值。此外,我们确定了哪些潜在的尺寸和大脑区域与阿尔茨海默病病理引起的异常偏差有关。
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IMPROVING NORMATIVE MODELING FOR MULTI-MODAL NEUROIMAGING DATA USING MIXTURE-OF-PRODUCT-OF-EXPERTS VARIATIONAL AUTOENCODERS.

Normative models in neuroimaging learn the brain patterns of healthy population distribution and estimate how disease subjects like Alzheimer's Disease (AD) deviate from the norm. Existing variational autoencoder (VAE)-based normative models using multimodal neuroimaging data aggregate information from multiple modalities by estimating product or averaging of unimodal latent posteriors. This can often lead to uninformative joint latent distributions which affects the estimation of subject-level deviations. In this work, we addressed the prior limitations by adopting the Mixture-of-Product-of-Experts (MoPoE) technique which allows better modelling of the joint latent posterior. Our model labelled subjects as outliers by calculating deviations from the multimodal latent space. Further, we identified which latent dimensions and brain regions were associated with abnormal deviations due to AD pathology.

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